DAPA: WSDM 2019深度匹配实际应用研讨会

Yixing Fan, Qingyao Ai, Z. Ren, Liangjie Hong, Dawei Yin, J. Guo
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引用次数: 2

摘要

两个信息对象之间的匹配是许多不同信息检索(IR)应用程序(包括Web搜索、问题回答和推荐)的核心。最近,深度学习方法在语音识别、计算机视觉和自然语言处理方面取得了巨大的成功,显著地推动了这些领域的发展。在红外领域,深度学习也备受关注,研究者提出了大量的深度匹配模型来解决不同红外应用的匹配问题。尽管深度匹配模型在这些领域取得了重大进展,但在将这些模型应用于真实IR场景时,仍有许多挑战需要解决。在本次研讨会中,我们将重点讨论深度匹配模型在实际应用中的适用性。我们的目标是讨论将深度匹配模型应用于生产系统的问题,以及揭示IR中不同匹配任务的基本特征。网站:https://wsdm2019-dapa.github.io/index.html
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DAPA: The WSDM 2019 Workshop on Deep Matching in Practical Applications
Matching between two information objects is the core of many different information retrieval (IR) applications including Web search, question answering, and recommendation. Recently, deep learning methods have yielded immense success in speech recognition, computer vision, and natural language processing, significantly advancing state-of-the-art of these areas. In the IR community, deep learning has also attracted much attention, and researchers have proposed a large number of deep matching models to tackle the matching problem for different IR applications. Despite the fact that deep matching models have gained significant progress in these areas, there are still many challenges to be addressed when applying these models to real IR scenarios. In this workshop, we focus on the applicability of deep matching models to practical applications. We aim to discuss the issues of applying deep matching models to production systems, as well as to shed some light on the fundamental characteristics of different matching tasks in IR. website : https://wsdm2019-dapa.github.io/index.html
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